Score: 3

Machine Learning-based Unfolding for Cross Section Measurements in the Presence of Nuisance Parameters

Published: December 8, 2025 | arXiv ID: 2512.07074v1

By: Huanbiao Zhu , Krish Desai , Mikael Kuusela and more

BigTech Affiliations: Stanford University University of California, Berkeley

Potential Business Impact:

Fixes science measurements distorted by machines.

Business Areas:
Personalization Commerce and Shopping

Statistically correcting measured cross sections for detector effects is an important step across many applications. In particle physics, this inverse problem is known as \textit{unfolding}. In cases with complex instruments, the distortions they introduce are often known only implicitly through simulations of the detector. Modern machine learning has enabled efficient simulation-based approaches for unfolding high-dimensional data. Among these, one of the first methods successfully deployed on experimental data is the \textsc{OmniFold} algorithm, a classifier-based Expectation-Maximization procedure. In practice, however, the forward model is only approximately specified, and the corresponding uncertainty is encoded through nuisance parameters. Building on the well-studied \textsc{OmniFold} algorithm, we show how to extend machine learning-based unfolding to incorporate nuisance parameters. Our new algorithm, called Profile \textsc{OmniFold}, is demonstrated using a Gaussian example as well as a particle physics case study using simulated data from the CMS Experiment at the Large Hadron Collider.

Country of Origin
πŸ‡―πŸ‡΅ πŸ‡ΊπŸ‡Έ Japan, United States

Page Count
38 pages

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